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Machine learning-based clinical outcome prediction in surgery for acromegaly.

Olivier ZanierMatteo ZoliVictor E StaartjesFederica GuaraldiSofia AsioliArianna RusticiValentino Marino PicciolaErnesto PasquiniMarco Faustini-FustiniZoran ErlicLuca RegliDiego MazzatentaCarlo Serra
Published in: Endocrine (2021)
Gross total resection, biochemical remission, and CSF leaks remain hard to predict, but machine learning offers potential in helping to tailor surgical therapy. We demonstrate the feasibility of developing and externally validating clinical prediction models for these outcomes after surgery for acromegaly and lay the groundwork for development of a multicenter model with more robust generalization.
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